Automated Quality and Process Control for Additive Manufacturing using Deep Convolutional Neural Networks

Y. Banadaki, Nariman Razaviarab, H. Fekrmandi, Guoqiang Li, P. Mensah, Shuju Bai, S. Sharifi
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引用次数: 3

Abstract

Additive Manufacturing (AM) is a crucial component of the smart manufacturing industry. In this paper, we propose an automated quality grading system for the fused deposition modeling (FDM) process as one of the major AM processes using a developed real-time deep convolutional neural network (CNN) model. The CNN model is trained offline using the images of the internal and surface defects in the layer-by-layer deposition of materials and tested online by studying the performance of detecting and grading the failure in AM process at different extruder speeds and temperatures. The model demonstrates an accuracy of 94% and specificity of 96%, as well as above 75% in measures of the F-score, the sensitivity, and the precision for classifying the quality of the AM process in five grades in real-time. The high-performance of the model could not be achieved with the values usually used for printing temperature and printing speed, only in addition with much higher values. The proposed online model adds an automated, consistent, and non-contact quality control signal to the AM process. The quality monitoring signal can also be used by the AM machine to stop the AM process and eliminate the sophisticated inspection of the printed parts for internal defects. The proposed quality control model ensures reliable parts with fewer quality hiccups while improving performance in time and material consumption.
基于深度卷积神经网络的增材制造质量和过程自动化控制
增材制造(AM)是智能制造行业的重要组成部分。在本文中,我们使用开发的实时深度卷积神经网络(CNN)模型,提出了一种自动质量分级系统,用于熔融沉积建模(FDM)过程作为AM的主要过程之一。利用材料逐层沉积过程中的内部和表面缺陷图像对CNN模型进行离线训练,并通过研究在不同挤出机速度和温度下增材制造过程中故障检测和分级的性能,对CNN模型进行在线测试。该模型的准确性为94%,特异性为96%,在F-score、灵敏度和精度方面的测量结果均超过75%,可实时将增材制造过程的质量分为五个等级。通常使用的打印温度和打印速度值无法实现模型的高性能,只有在更高的值之外才能实现。提出的在线模型为增材制造过程增加了自动化、一致和非接触的质量控制信号。质量监控信号也可以被增材制造机用来停止增材制造过程,消除对打印件内部缺陷的精密检查。提出的质量控制模型确保可靠的零件,减少质量问题,同时提高时间和材料消耗的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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